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Non-Intrusive Load Monitoring Using Prior Models of General Appliance Types

机译:使用先前模型的通用器具类型的非侵入式负载监控

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Non-intrusive appliance load monitoring is the process of disaggregating a household's total electricity consumption into its contributing appliances. In this paper we propose an approach by which individual appliances can be iteratively separated from an aggregate load. Unlike existing approaches, our approach does not require training data to be collected by sub-metering individual appliances, nor does it assume complete knowledge of the appliances present in the household. Instead, we propose an approach in which prior models of general appliance types are tuned to specific appliance instances using only signatures extracted from the aggregate load. The tuned appliance models are then used to estimate each appliance's load, which is subsequently subtracted from the aggregate load. This process is applied iteratively until all appliances for which prior behaviour models are known have been disaggregated. We evaluate the accuracy of our approach using the REDD data set, and show the disaggregation performance when using our training approach is comparable to when sub-metered training data is used. We also present a deployment of our system as a live application and demonstrate the potential for personalised energy saving feedback.
机译:非侵入式设备负荷监测是将家庭的总电消耗分解为其贡献设备的过程。在本文中,我们提出了一种方法,通过该方法可以与骨料载荷迭代地分离。与现有方法不同,我们的方法不需要通过子计量个别电器收集培训数据,也不承担家庭中存在的电器的完全了解。相反,我们提出了一种方法,其中通常使用从聚合负载提取的签名调整通用器具类型的先前模型。然后使用调谐器具模型来估计每个设备的负载,随后从聚合负载中减去。迭代地应用该过程,直到已知其所有先前行为模型的设备都被分解。我们使用REDD数据集评估我们的方法的准确性,并在使用我们的训练方法时显示分列性能与使用子计量训练数据时可比。我们还将系统部署为现场应用,并展示了个性化节能反馈的潜力。

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